Action Disambiguation Analysis Using Normalized Google-Like Distance Correlogram

@inproceedings{Sun2012ActionDA,
  title={Action Disambiguation Analysis Using Normalized Google-Like Distance Correlogram},
  author={Qianru Sun and Hong W. Liu},
  booktitle={ACCV},
  year={2012}
}
Classifying realistic human actions in video remains challenging for existing intro-variability and inter-ambiguity in action classes. Recently, Spatial-Temporal Interest Point (STIP) based local features have shown great promise in complex action analysis. However, these methods have the limitation that they typically focus on Bag-of-Words (BoW) algorithm, which can hardly discriminate actions’ ambiguity due to ignoring of spatial-temporal occurrence relations of visual words. In this paper… CONTINUE READING
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